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XGrasp: Gripper-Aware Grasp Detection with Multi-Gripper Data Generation

About

Real-world robotic systems frequently require diverse end-effectors for different tasks, however most existing grasp detection methods are optimized for a single gripper type, demanding retraining or optimization for each novel gripper configuration. This gripper-specific retraining paradigm is neither scalable nor practical. We propose XGrasp, a real-time gripper-aware grasp detection framework that generalizes to novel gripper configurations without additional training or optimization. To resolve data scarcity, we augment existing single-gripper datasets with multi-gripper annotations by incorporating the physical characteristics and closing trajectories of diverse grippers. Each gripper is represented as a two-channel 2D image encoding its static shape (Gripper Mask) and dynamic closing trajectory (Gripper Path). XGrasp employs a hierarchical two-stage architecture consisting of a Grasp Point Predictor (GPP) and an Angle-Width Predictor (AWP). In the AWP, contrastive learning with a quality-aware anchor builds a gripper-agnostic embedding space, enabling generalization to novel grippers without additional training. Experimental results demonstrate that XGrasp outperforms existing gripper-aware methods in both grasp success rate and inference speed across diverse gripper types. Project page: https://sites.google.com/view/xgrasp

Yeonseo Lee, Jungwook Mun, Hyosup Shin, Guebin Hwang, Junhee Nam, Taeyeop Lee, Sungho Jo• 2025

Related benchmarks

TaskDatasetResultRank
GraspingJacquard WSG50
Success Rate95.4
6
GraspingJacquard Franka
Success Rate88.5
6
GraspingJacquard Kinova
Success Rate (SR)87.3
6
GraspingJacquard Delto
Success Rate93.1
6
GraspingJacquard DH3
Success Rate90.8
6
GraspingJacquard Average
Success Rate (SR)90.3
6
GraspingJacquard Barrett
SR89.6
6
GraspingJacquard Robotiq-3F
Success Rate87.3
6
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